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GLORY: Exploration and integration of global and local correlations to improve personalized online social recommendations

机译:GLORY:探索和整合全球和本地相关性,以改善个性化的在线社交推荐

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摘要

Nowadays people manage their social circles via a variety of online social media which employ social recommendation as an important component. Among social recommendation methods, global methods take an emphasis on common tastes between people while local methods assume that new relations are established mainly through people's common friends. However, in a real social network, both local and global relations exist, which motivate us to integrate them to improve recommendation performance. To achieve the goal, we proposed a novel hybrid method GLORY to combine global associations with local correlations for social recommendation. GLORY consists of two components: GLOBE and LORY. The former is a globalised regression model to explore the concordance between people's preference with the relatedness of their friends. The latter is an integration method to fuse global and local correlations via a rigorous statistical model to calibrate the statistical significance of these correlations. Furthermore, we demonstrated the effectiveness of our methods via 10-fold large-scale cross-validation on three real social network datasets (Facebook, Last.fm and Epinions). Results show that GLORY significantly outperform the state-of-the-art methods while LORY is effective across various global and local methods, indicating their promising future for social recommendations.
机译:如今,人们通过各种将社交推荐作为重要组成部分的在线社交媒体来管理自己的社交圈。在社会推荐方法中,全局方法强调人与人之间的共同品味,而本地方法则假定主要通过人们的共同朋友建立新关系。但是,在一个真实的社交网络中,既存在本地关系又存在全球关系,这促使我们将它们整合起来以提高推荐效果。为了实现该目标,我们提出了一种新颖的混合方法GLORY,该方法将全局关联与局部关联相结合以进行社会推荐。 GLORY由两个组件组成:GLOBE和LORY。前者是一种全球化的回归模型,用于探索人们的喜好与其朋友的亲戚之间的一致性。后者是一种集成方法,可通过严格的统计模型融合全局和局部相关性,以校准这些相关性的统计显着性。此外,我们通过对三个真实的社交网络数据集(Facebook,Last.fm和Epinions)进行10倍大规模交叉验证,证明了我们方法的有效性。结果表明,GLORY的性能明显优于最新方法,而LORY在各种全球和本地方法中均有效,表明它们在社会推荐方面的前景广阔。

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